Published March 29, 2021 | Version v1
Conference paper Open

Accelerating deep neural networks for efficient scene understanding in automotive cyber-physical systems

  • 1. Industrial Systems Institute, Athena Research Center, Patras
  • 2. Industrial Systems Institute, Athena Research Center, Patras,Computer Engineering and Informatics Dept., University of Patras,
  • 3. Industrial Systems Institute, Athena Research Center, Patras,Computer Engineering and Informatics Dept., University of Patras

Description

Automotive Cyber-Physical Systems (ACPS) have attracted a significant amount of interest in the past few decades,
while one of the most critical operations in these systems is the perception of the environment.

Deep learning and, especially, the use of Deep Neural Networks (DNNs) provides impressive results in analyzing and understanding complex and dynamic scenes from visual data. The prediction horizons for those perception systems are very short and inference must often be performed in real time, stressing the need of transforming the original large pre-trained networks into new smaller models, by utilizing Model Compression and Acceleration (MCA) techniques. Our goal in this work is to investigate best practices for appropriately applying novel weight sharing techniques, optimizing the available variables and the training procedures towards the significant acceleration of widely adopted DNNs. Extensive evaluation studies carried out using various state-of-the-art DNN models in object detection and tracking experiments, provide details about the type of errors that manifest after the application
of weight sharing techniques, resulting in significant acceleration gains with negligible accuracy losses.

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Additional details

Funding

CPSoSaware – Cross-layer cognitive optimization tools & methods for the lifecycle support of dependable CPSoS 871738
European Commission